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Medical visual question answering enhanced by multimodal feature augmentation and tri-path collaborative attention
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作者 SUN Haocheng DUAN Yong 《High Technology Letters》 2025年第2期175-183,共9页
Medical visual question answering(MedVQA)faces unique challenges due to the high precision required for images and the specialized nature of the questions.These challenges include insufficient feature extraction capab... Medical visual question answering(MedVQA)faces unique challenges due to the high precision required for images and the specialized nature of the questions.These challenges include insufficient feature extraction capabilities,a lack of textual priors,and incomplete information fusion and interaction.This paper proposes an enhanced bootstrapping language-image pre-training(BLIP)model for MedVQA based on multimodal feature augmentation and triple-path collaborative attention(FCA-BLIP)to address these issues.First,FCA-BLIP employs a unified bootstrap multimodal model architecture that integrates ResNet and bidirectional encoder representations from Transformer(BERT)models to enhance feature extraction capabilities.It enables a more precise analysis of the details in images and questions.Next,the pre-trained BLIP model is used to extract features from image-text sample pairs.The model can understand the semantic relationships and shared information between images and text.Finally,a novel attention structure is developed to fuse the multimodal feature vectors,thereby improving the alignment accuracy between modalities.Experimental results demonstrate that the proposed method performs well in clinical visual question-answering tasks.For the MedVQA task of staging diabetic macular edema in fundus imaging,the proposed method outperforms the existing major models in several performance metrics. 展开更多
关键词 MULTIMODAL deep learning visual question answering(VQA) feature extraction attention mechanism
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Insights on Song Dynasty Medical Exams from Tai Yi Ju Zhu Ke Cheng Wen Ge(《太医局诸科程文格》Examination Answers and Standards of the Imperial Medical Bureau)
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作者 HU Lingbai ZHANG Xuedan 《Chinese Medicine and Culture》 2025年第1期68-77,共10页
The medical education of the Song dynasty constitutes a pivotal aspect within the broader framework of ancient Chinese medical education. The advent of the imperial examination system coincided with the emergence of a... The medical education of the Song dynasty constitutes a pivotal aspect within the broader framework of ancient Chinese medical education. The advent of the imperial examination system coincided with the emergence of a medical examination system, which served as the cornerstone for the subsequent evolution of medical education. According to historical records, the Song government established dedicated medical departments, along with comprehensive systems encompassing medical professors, students, and examinations. By examining extant medical historical documents, such as Tai Yi Ju Zhu Ke Cheng Wen Ge(《太医局诸科程文格》 Examination Answers and Standards of the Imperial Medical Bureau), researchers and readers can obtain a comprehensive understanding of the medical system that prevailed in the Song dynasty. While the intricate details of medical education during this era are not explicitly documented in historical records, modern researchers have the opportunity to uncover the entire view of medical education, particularly the medical examination system, through rigorous analysis of these extant historical medical documents. Such studies offer valuable insights into the developmental trajectory of the ancient Chinese medical examination system and provide crucial references for contemporary medical education. By conducting in-depth literature research and analysis of Tai Yi Ju Zhu Ke Cheng Wen Ge, this study endeavors to reconstruct the authentic scenario of medical examinations in the Song dynasty, as presented in the document, for the benefit of modern readers and researchers. 展开更多
关键词 Song dynasty Medical education History of medicine EXAMINATION Medical classics Tai Yi Ju Zhu Ke Cheng Wen Ge(《太医局诸科程文格》Examination answers and Standards of the Imperial Medical Bureau)
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A Dynamic Knowledge Base Updating Mechanism-Based Retrieval-Augmented Generation Framework for Intelligent Question-and-Answer Systems
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作者 Yu Li 《Journal of Computer and Communications》 2025年第1期41-58,共18页
In the context of power generation companies, vast amounts of specialized data and expert knowledge have been accumulated. However, challenges such as data silos and fragmented knowledge hinder the effective utilizati... In the context of power generation companies, vast amounts of specialized data and expert knowledge have been accumulated. However, challenges such as data silos and fragmented knowledge hinder the effective utilization of this information. This study proposes a novel framework for intelligent Question-and-Answer (Q&A) systems based on Retrieval-Augmented Generation (RAG) to address these issues. The system efficiently acquires domain-specific knowledge by leveraging external databases, including Relational Databases (RDBs) and graph databases, without additional fine-tuning for Large Language Models (LLMs). Crucially, the framework integrates a Dynamic Knowledge Base Updating Mechanism (DKBUM) and a Weighted Context-Aware Similarity (WCAS) method to enhance retrieval accuracy and mitigate inherent limitations of LLMs, such as hallucinations and lack of specialization. Additionally, the proposed DKBUM dynamically adjusts knowledge weights within the database, ensuring that the most recent and relevant information is utilized, while WCAS refines the alignment between queries and knowledge items by enhanced context understanding. Experimental validation demonstrates that the system can generate timely, accurate, and context-sensitive responses, making it a robust solution for managing complex business logic in specialized industries. 展开更多
关键词 Retrieval-Augmented Generation Question-and-answer Large Language Models Dynamic Knowledge Base Updating Mechanism Weighted Context-Aware Similarity
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Question classification in question answering based on real-world web data sets
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作者 袁晓洁 于士涛 +1 位作者 师建兴 陈秋双 《Journal of Southeast University(English Edition)》 EI CAS 2008年第3期272-275,共4页
To improve question answering (QA) performance based on real-world web data sets,a new set of question classes and a general answer re-ranking model are defined.With pre-defined dictionary and grammatical analysis,t... To improve question answering (QA) performance based on real-world web data sets,a new set of question classes and a general answer re-ranking model are defined.With pre-defined dictionary and grammatical analysis,the question classifier draws both semantic and grammatical information into information retrieval and machine learning methods in the form of various training features,including the question word,the main verb of the question,the dependency structure,the position of the main auxiliary verb,the main noun of the question,the top hypernym of the main noun,etc.Then the QA query results are re-ranked by question class information.Experiments show that the questions in real-world web data sets can be accurately classified by the classifier,and the QA results after re-ranking can be obviously improved.It is proved that with both semantic and grammatical information,applications such as QA, built upon real-world web data sets, can be improved,thus showing better performance. 展开更多
关键词 question classification question answering real-world web data sets question and answer web forums re-ranking model
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Influencing factors of answer adoption in social Q&A communities from users' perspective: Taking Zhihu as an example 被引量:5
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作者 Xiaoyu CHEN Shengli DENG 《Chinese Journal of Library and Information Science》 2014年第3期81-95,共15页
Purpose: Taking Zhihu as the object for a case study, we intend to analyze the key factors that have affected users on adopting answers in social Q&A(SQA) websites.Design/methodology/approach: With information ado... Purpose: Taking Zhihu as the object for a case study, we intend to analyze the key factors that have affected users on adopting answers in social Q&A(SQA) websites.Design/methodology/approach: With information adoption model(IAM) as the theoretical foundation and widely accepted evaluation criteria for answer quality in SQA sites as variables, we constructed a factor model that has influenced SQA community users to adopt offered answers. With the partial least squares(PLS) technique, our model was then empirically tested through a sample of 311 Zhihu users.Findings: Our results showed that answer usefulness is the most effective variable, and answer interactivity and answer entertainment both have positive and significant impacts on users’ attitude to adopt answers in an SQA community. Except for novelty, other three components of answer quality, i.e. knowledge, reliability, and solution to the problem have all significant effect on answer usefulness.Research limitations: First, due to the limited sample size, it is still questionable if our research results based on Zhihu could be applied to other SQA communities. Second, our questionnaires were mainly designed to investigate how users felt about the answers in an SQA site, but did not differentiate the content of the answer itself.Practical implications: As a three-year-old SQA platform, Zhihu has developed very quickly with its high-quality answers and public intellectual users, and has been regarded as one of the representatives of fast emerging Chinese SQA communities in recent years. Our studycould help shed light on users’ information sharing and knowledge adoption behaviors in a Chinese SQA site, such as Zhihu. Originality/value: Compared with previous studies on answer quality assessments in SQA sites and on information adoption model, to the best of our knowledge, this is one of the pioneer studies which combined answer qualities with users’ intention of adopting SQA answers. Our study on user answer adoption in Zhihu community could further develop the theory of IAM. This study showed that answer usefulness is the most important motivation of Zhihu users in the process of adopting answers. 展开更多
关键词 Social question & answer(SQA) site Zhihu User in SQA site answer quality answer adoption
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ANSWER2000在小流域土壤侵蚀过程模拟中的应用研究 被引量:32
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作者 牛志明 解明曙 +1 位作者 孙阁 McNulty S G 《水土保持学报》 CSCD 北大核心 2001年第3期56-60,共5页
ANSWERS2 0 0 0是一个用于流域土壤侵蚀过程模拟的分散型物理模型 ,将此模型运用于三峡库区小流域侵蚀产沙、地表径流以及不同土地利用类型水沙分布状况的模拟中。通过两个不同小流域模拟结果的对比 ,采用误差百分比、线性回归以及 Nash... ANSWERS2 0 0 0是一个用于流域土壤侵蚀过程模拟的分散型物理模型 ,将此模型运用于三峡库区小流域侵蚀产沙、地表径流以及不同土地利用类型水沙分布状况的模拟中。通过两个不同小流域模拟结果的对比 ,采用误差百分比、线性回归以及 Nash- Sutcliffe效率 3种方法 ,分析和评价了模型的模拟效果。结果表明 ,模型在应用于我国三峡库区小流域土壤侵蚀模拟时 ,其模拟结果与实测结果具有较高的吻合度 ,模拟结果基本可信。但是 ,对于一些陡坡林地等特殊地类 ,模型的模拟误差较大 ,其模拟精度还有待于进一步提高。 展开更多
关键词 土壤侵蚀模型 小流域 answerS2000
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ANSWERS模型及其应用 被引量:10
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作者 张玉斌 郑粉莉 《水土保持研究》 CSCD 2004年第4期165-168,共4页
ANSWERS模型主要是针对欧洲平原地区研发的分散型物理模型。介绍了模型的研发历史、结构、输入和输出信息以及模型的应用。ANSWERS主要适用于缓坡地形区的径流模拟、侵蚀模拟和农业污染物运移模拟。如何根据中国的实际合理确定模型参数... ANSWERS模型主要是针对欧洲平原地区研发的分散型物理模型。介绍了模型的研发历史、结构、输入和输出信息以及模型的应用。ANSWERS主要适用于缓坡地形区的径流模拟、侵蚀模拟和农业污染物运移模拟。如何根据中国的实际合理确定模型参数,使模型在我国复杂地形区应用,尚有许多问题需要研究。 展开更多
关键词 answerS模型 研发历史 应用 污染物运移
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土壤侵蚀建模中ANSWERS及地理信息系统ARC/INFO^R的应用研究 被引量:31
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作者 陈一兵 K.O.Trouwborst 《土壤侵蚀与水土保持学报》 CSCD 北大核心 1997年第2期1-13,共13页
研究了土壤侵蚀模型ANSWERS和地理信息系统(GIS)ARC/INFO之间的连结。采用ARC/INFO建立数据库和ANSWERS进行实际操作,加强了该模型在制定水保措施中的应用。同时,研究出的ARCANS模型,使A... 研究了土壤侵蚀模型ANSWERS和地理信息系统(GIS)ARC/INFO之间的连结。采用ARC/INFO建立数据库和ANSWERS进行实际操作,加强了该模型在制定水保措施中的应用。同时,研究出的ARCANS模型,使ARC/INFO和ANSWERS之间的连结更为容易、有效。最后,对四川紫色丘陵区的一个小流域实施了模拟,以展示连结情况和一些值得注意的问题。 展开更多
关键词 answerS土壤侵蚀模型 地理信息系统 土壤侵蚀 数据库 水土保持措施 紫色丘陵区
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Analysis of community question-answering issues via machine learning and deep learning:State-of-the-art review 被引量:5
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作者 Pradeep Kumar Roy Sunil Saumya +2 位作者 Jyoti Prakash Singh Snehasish Banerjee Adnan Gutub 《CAAI Transactions on Intelligence Technology》 SCIE EI 2023年第1期95-117,共23页
Over the last couple of decades,community question-answering sites(CQAs)have been a topic of much academic interest.Scholars have often leveraged traditional machine learning(ML)and deep learning(DL)to explore the eve... Over the last couple of decades,community question-answering sites(CQAs)have been a topic of much academic interest.Scholars have often leveraged traditional machine learning(ML)and deep learning(DL)to explore the ever-growing volume of content that CQAs engender.To clarify the current state of the CQA literature that has used ML and DL,this paper reports a systematic literature review.The goal is to summarise and synthesise the major themes of CQA research related to(i)questions,(ii)answers and(iii)users.The final review included 133 articles.Dominant research themes include question quality,answer quality,and expert identification.In terms of dataset,some of the most widely studied platforms include Yahoo!Answers,Stack Exchange and Stack Overflow.The scope of most articles was confined to just one platform with few cross-platform investigations.Articles with ML outnumber those with DL.Nonetheless,the use of DL in CQA research is on an upward trajectory.A number of research directions are proposed. 展开更多
关键词 answer quality community question answering deep learning expert user machine learning question quality
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A Novel Bidirectional LSTM and Attention Mechanism Based Neural Network for Answer Selection in Community Question Answering 被引量:4
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作者 Bo Zhang Haowen Wang +2 位作者 Longquan Jiang Shuhan Yuan Meizi Li 《Computers, Materials & Continua》 SCIE EI 2020年第3期1273-1288,共16页
Deep learning models have been shown to have great advantages in answer selection tasks.The existing models,which employ encoder-decoder recurrent neural network(RNN),have been demonstrated to be effective.However,the... Deep learning models have been shown to have great advantages in answer selection tasks.The existing models,which employ encoder-decoder recurrent neural network(RNN),have been demonstrated to be effective.However,the traditional RNN-based models still suffer from limitations such as 1)high-dimensional data representation in natural language processing and 2)biased attentive weights for subsequent words in traditional time series models.In this study,a new answer selection model is proposed based on the Bidirectional Long Short-Term Memory(Bi-LSTM)and attention mechanism.The proposed model is able to generate the more effective question-answer pair representation.Experiments on a question answering dataset that includes information from multiple fields show the great advantages of our proposed model.Specifically,we achieve a maximum improvement of 3.8%over the classical LSTM model in terms of mean average precision. 展开更多
关键词 Question answering answer selection deep learning Bi-LSTM attention mechanisms
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Answer Tree软件在病例组合研究中的应用 被引量:2
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作者 何凡 沈毅 《浙江预防医学》 2005年第7期56-58,共3页
关键词 answer Tree软件 病例组合研究 SPSS公司 卫生保健 政策研究 信用度评估 质量控制 统计
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借鉴Google Answers构建高校图书馆咨询专家队伍 被引量:2
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作者 张英敏 《图书馆学刊》 2007年第5期36-37,共2页
分析Google Answers,借鉴它的问答模式、用人政策等,从而构想依托高校专家教授的人力资源来建立高校图书馆的咨询专家队伍。
关键词 GOOGLE answerS 高校图书馆 网上咨询 咨询专家
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ACLSTM:A Novel Method for CQA Answer Quality Prediction Based on Question-Answer Joint Learning 被引量:2
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作者 Weifeng Ma Jiao Lou +1 位作者 Caoting Ji Laibin Ma 《Computers, Materials & Continua》 SCIE EI 2021年第1期179-193,共15页
Given the limitations of the community question answering(CQA)answer quality prediction method in measuring the semantic information of the answer text,this paper proposes an answer quality prediction model based on t... Given the limitations of the community question answering(CQA)answer quality prediction method in measuring the semantic information of the answer text,this paper proposes an answer quality prediction model based on the question-answer joint learning(ACLSTM).The attention mechanism is used to obtain the dependency relationship between the Question-and-Answer(Q&A)pairs.Convolutional Neural Network(CNN)and Long Short-term Memory Network(LSTM)are used to extract semantic features of Q&A pairs and calculate their matching degree.Besides,answer semantic representation is combined with other effective extended features as the input representation of the fully connected layer.Compared with other quality prediction models,the ACLSTM model can effectively improve the prediction effect of answer quality.In particular,the mediumquality answer prediction,and its prediction effect is improved after adding effective extended features.Experiments prove that after the ACLSTM model learning,the Q&A pairs can better measure the semantic match between each other,fully reflecting the model’s superior performance in the semantic information processing of the answer text. 展开更多
关键词 answer quality semantic matching attention mechanism community question answering
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A multi-attention RNN-based relation linking approach for question answering over knowledge base 被引量:2
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作者 Li Huiying Zhao Man Yu Wenqi 《Journal of Southeast University(English Edition)》 EI CAS 2020年第4期385-392,共8页
Aiming at the relation linking task for question answering over knowledge base,especially the multi relation linking task for complex questions,a relation linking approach based on the multi-attention recurrent neural... Aiming at the relation linking task for question answering over knowledge base,especially the multi relation linking task for complex questions,a relation linking approach based on the multi-attention recurrent neural network(RNN)model is proposed,which works for both simple and complex questions.First,the vector representations of questions are learned by the bidirectional long short-term memory(Bi-LSTM)model at the word and character levels,and named entities in questions are labeled by the conditional random field(CRF)model.Candidate entities are generated based on a dictionary,the disambiguation of candidate entities is realized based on predefined rules,and named entities mentioned in questions are linked to entities in knowledge base.Next,questions are classified into simple or complex questions by the machine learning method.Starting from the identified entities,for simple questions,one-hop relations are collected in the knowledge base as candidate relations;for complex questions,two-hop relations are collected as candidates.Finally,the multi-attention Bi-LSTM model is used to encode questions and candidate relations,compare their similarity,and return the candidate relation with the highest similarity as the result of relation linking.It is worth noting that the Bi-LSTM model with one attentions is adopted for simple questions,and the Bi-LSTM model with two attentions is adopted for complex questions.The experimental results show that,based on the effective entity linking method,the Bi-LSTM model with the attention mechanism improves the relation linking effectiveness of both simple and complex questions,which outperforms the existing relation linking methods based on graph algorithm or linguistics understanding. 展开更多
关键词 question answering over knowledge base(KBQA) entity linking relation linking multi-attention bidirectional long short-term memory(Bi-LSTM) large-scale complex question answering dataset(LC-QuAD)
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Designing an automated FAQ answering system for farmers based on hybrid strategies 被引量:1
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作者 Junliang ZHANG Xuefang ZHU Guang ZHU 《Chinese Journal of Library and Information Science》 2012年第4期21-36,共16页
Purpose: The purpose of this study is to develop an automated frequently asked question(FAQ) answering system for farmers. This paper presents an approach for calculating the similarity between Chinese sentences based... Purpose: The purpose of this study is to develop an automated frequently asked question(FAQ) answering system for farmers. This paper presents an approach for calculating the similarity between Chinese sentences based on hybrid strategies.Design/methodology/approach: We analyzed the factors influencing the successful matching between a user's question and a question-answer(QA) pair in the FAQ database. Our approach is based on a combination of multiple factors. Experiments were conducted to test the performance of our method.Findings: Experiments show that this proposed method has higher accuracy. Compared with similarity calculation based on TF-IDF,the sentence surface forms and the semantic relations,the proposed method based on hybrid strategies has a superior performance in precision,recall and F-measure value.Research limitations: The FAQ answering system is only capable of meeting users' demand for text retrieval at present. In the future,the system needs to be improved to meet users' demand for retrieving images and videos.Practical implications: This FAQ answering system will help farmers utilize agricultural information resources more efficiently.Originality/value: We design the algorithms for calculating similarity of Chinese sentences based on hybrid strategies,which integrate the question surface similarity,the question semantic similarity and the question-answer similarity based on latent semantic analysis(LSA) to find answers to a user's question. 展开更多
关键词 Frequently asked question(FAQ)answering system Sentence surface similarity Semantic similarity Latent semantic analysis(LSA) Similarity computation based on hybrid strategies FAQ answering system for farmers
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A novel approach for agent ontology and its application in question answering
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作者 郭庆琳 《Journal of Central South University》 SCIE EI CAS 2009年第5期781-788,共8页
The information integration method of semantic web based on agent ontology(SWAO method) was put forward aiming at the problems in current network environment,which integrates,analyzes and processes enormous web inform... The information integration method of semantic web based on agent ontology(SWAO method) was put forward aiming at the problems in current network environment,which integrates,analyzes and processes enormous web information and extracts answers on the basis of semantics. With SWAO method as the clue,the following technologies were studied:the method of concept extraction based on semantic term mining,agent ontology construction method on account of multi-points and the answer extraction in view of semantic inference. Meanwhile,the structural model of the question answering system applying ontology was presented,which adopts OWL language to describe domain knowledge from where QA system infers and extracts answers by Jena inference engine. In the system testing,the precision rate reaches 86%,and the recalling rate is 93%. The experimental results prove that it is feasible to use the method to develop a question answering system,which is valuable for further study in more depth. 展开更多
关键词 agent ontology question answering semantic web concept extraction answer extraction natural language processing
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Dual modality prompt learning for visual question-grounded answering in robotic surgery 被引量:1
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作者 Yue Zhang Wanshu Fan +3 位作者 Peixi Peng Xin Yang Dongsheng Zhou Xiaopeng Wei 《Visual Computing for Industry,Biomedicine,and Art》 2024年第1期316-328,共13页
With recent advancements in robotic surgery,notable strides have been made in visual question answering(VQA).Existing VQA systems typically generate textual answers to questions but fail to indicate the location of th... With recent advancements in robotic surgery,notable strides have been made in visual question answering(VQA).Existing VQA systems typically generate textual answers to questions but fail to indicate the location of the relevant content within the image.This limitation restricts the interpretative capacity of the VQA models and their abil-ity to explore specific image regions.To address this issue,this study proposes a grounded VQA model for robotic surgery,capable of localizing a specific region during answer prediction.Drawing inspiration from prompt learning in language models,a dual-modality prompt model was developed to enhance precise multimodal information interactions.Specifically,two complementary prompters were introduced to effectively integrate visual and textual prompts into the encoding process of the model.A visual complementary prompter merges visual prompt knowl-edge with visual information features to guide accurate localization.The textual complementary prompter aligns vis-ual information with textual prompt knowledge and textual information,guiding textual information towards a more accurate inference of the answer.Additionally,a multiple iterative fusion strategy was adopted for comprehensive answer reasoning,to ensure high-quality generation of textual and grounded answers.The experimental results vali-date the effectiveness of the model,demonstrating its superiority over existing methods on the EndoVis-18 and End-oVis-17 datasets. 展开更多
关键词 Prompt learning Visual prompt Textual prompt Grounding-answering Visual question answering
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评短片《Answer》:如果精神被取代了,我们何以为人?
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作者 袁小轩 《戏剧之家》 2020年第14期103-103,共1页
《Answer》是一部略带魔幻现实风格的短片,剧情聚焦于一个有着手机依赖症的大学生,而主题实际指向现代科技的发展与传统伦理、人性美好的背离。
关键词 短片 answer 九分钟微电影锦标赛 选择困难症 手机依赖症
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The Answer is 9 or 10?
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作者 江春莲 《中学数学教学参考(上半月高中)》 北大核心 2007年第3期59-59,共1页
Below is Problem 9 in Singapore MathematicalOlympiad 2001:Five people jointly bought a lottery ticketwhich won the first prize.They decided to keeptheir ticket in a locker installed with a number oflocks.Each person m... Below is Problem 9 in Singapore MathematicalOlympiad 2001:Five people jointly bought a lottery ticketwhich won the first prize.They decided to keeptheir ticket in a locker installed with a number oflocks.Each person may hold the keys to more thanone lock.What is the minimum number of locks nee-ded to serve the purpose that any 3 together will beable to open the locker but any 2 of them togetherwill not be able to open it ?A.6 B.9 C.10 D. 展开更多
关键词 The answer is 9 or 10
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非点源污染模型ANSWERS-2000的水文子模型研究 被引量:5
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作者 潘沛 刘凌 梁威 《水土保持研究》 CSCD 北大核心 2008年第1期103-106,共4页
非点源污染的前期过程,是在流域面上污染物质或是营养元素随着降雨径流的产生而产生。利用实验室大型土槽试验,研究ANSWERS-2000模型的水文子模型对于人工降雨事件的模拟精度,探索ANSWERS-2000在理想坡面上的适用情况,并且尽可能准... 非点源污染的前期过程,是在流域面上污染物质或是营养元素随着降雨径流的产生而产生。利用实验室大型土槽试验,研究ANSWERS-2000模型的水文子模型对于人工降雨事件的模拟精度,探索ANSWERS-2000在理想坡面上的适用情况,并且尽可能准确地给出其水文模型的部分参数的取值。经过计算发现该水文子模型模拟理想坡面的误差较小,但是存在系统偏大的情况;整个计算单元的Manning糙率取0.03~0.07。存在的问题有参数土表面结皮层厚度只能定性无法准确的定量描述;降雨装置测流装置对于径流模拟产生的影响较大。 展开更多
关键词 大型土槽 非点源污染 answerS-2000 Green-Ampt入渗方程 结皮层
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